Learnersourcing in the Age of AI: Student, Educator and Machine Partnerships for Content Creation
June 10, 2023 Β· Declared Dead Β· π Computers and Education: Artificial Intelligence
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Authors
Hassan Khosravi, Paul Denny, Steven Moore, John Stamper
arXiv ID
2306.06386
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.AI
Citations
48
Venue
Computers and Education: Artificial Intelligence
Last Checked
3 months ago
Abstract
Engaging students in creating novel content, also referred to as learnersourcing, is increasingly recognised as an effective approach to promoting higher-order learning, deeply engaging students with course material and developing large repositories of content suitable for personalized learning. Despite these benefits, some common concerns and criticisms are associated with learnersourcing (e.g., the quality of resources created by students, challenges in incentivising engagement and lack of availability of reliable learnersourcing systems), which have limited its adoption. This paper presents a framework that considers the existing learnersourcing literature, the latest insights from the learning sciences and advances in AI to offer promising future directions for developing learnersourcing systems. The framework is designed around important questions and human-AI partnerships relating to four key aspects: (1) creating novel content, (2) evaluating the quality of the created content, (3) utilising learnersourced contributions of students and (4) enabling instructors to support students in the learnersourcing process. We then present two comprehensive case studies that illustrate the application of the proposed framework in relation to two existing popular learnersourcing systems.
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